(* Content-type: application/vnd.wolfram.mathematica *)

(*** Wolfram Notebook File ***)
(* http://www.wolfram.com/nb *)

(* CreatedBy='Mathematica 8.0' *)

(*CacheID: 234*)
(* Internal cache information:
NotebookFileLineBreakTest
NotebookFileLineBreakTest
NotebookDataPosition[       157,          7]
NotebookDataLength[    102509,       1868]
NotebookOptionsPosition[     99799,       1769]
NotebookOutlinePosition[    100178,       1785]
CellTagsIndexPosition[    100135,       1782]
WindowFrame->Normal*)

(* Beginning of Notebook Content *)
Notebook[{

Cell[CellGroupData[{
Cell["Estimation of CLalpha", "Title",
 CellChangeTimes->{{3.635055218767805*^9, 3.6350552280697355`*^9}, {
  3.635055319289857*^9, 3.635055320704998*^9}}],

Cell[CellGroupData[{

Cell["CLalpha = 2 Pi AR/(c1+ AR)", "Input"],

Cell[BoxData[
 FractionBox[
  RowBox[{"10", " ", "\[Pi]"}], 
  RowBox[{"5", "+", "c1"}]]], "Output",
 CellChangeTimes->{
  3.53850429715625*^9, 3.538505276796875*^9, 3.5385053505*^9, 
   3.538505412578125*^9, 3.5388042524522686`*^9, 3.538804334763715*^9, 
   3.5388044593091373`*^9, 3.538804493137046*^9, 3.538804555464772*^9, 
   3.5388045976988773`*^9, {3.5388047690104847`*^9, 3.5388047858073597`*^9}, 
   3.5388048416198597`*^9, 3.5388049761667347`*^9, {3.538806298447195*^9, 
   3.53880632165032*^9}, 3.5388290765320177`*^9, 3.5389080879373207`*^9, {
   3.538908205141196*^9, 3.538908222344431*^9}, 3.5693014834376774`*^9, 
   3.5693016637418375`*^9, {3.635054738455609*^9, 3.6350547526026087`*^9}}]
}, Open  ]],

Cell["c1=.", "Input"],

Cell["AR=.", "Input"],

Cell[CellGroupData[{

Cell["DxCLalpha=D[CLalpha,AR]", "Input"],

Cell[BoxData["0"], "Output",
 CellChangeTimes->{
  3.5385042971875*^9, 3.5385052768125*^9, 3.53850535053125*^9, 
   3.53850541259375*^9, 3.5388042524835176`*^9, 3.5388043347949643`*^9, 
   3.5388044593403873`*^9, 3.538804493168296*^9, 3.538804555527272*^9, 
   3.5388045977457514`*^9, {3.5388047690417347`*^9, 3.5388047858386097`*^9}, 
   3.5388048416511097`*^9, 3.5388049762136097`*^9, {3.53880629846282*^9, 
   3.538806321697195*^9}, 3.5388290765632677`*^9, 3.538908087999821*^9, {
   3.5389082051880713`*^9, 3.538908222391306*^9}, 3.5693014834844775`*^9, 
   3.5693016637818413`*^9, {3.6350547385106087`*^9, 3.635054752660609*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["AR=1", "Input"],

Cell[BoxData["1"], "Output",
 CellChangeTimes->{
  3.538504297203125*^9, 3.538505276828125*^9, 3.538505350546875*^9, 
   3.538505412609375*^9, 3.5388042525147676`*^9, 3.538804334826214*^9, 
   3.5388044593560123`*^9, 3.538804493183921*^9, 3.5388045555428967`*^9, 
   3.5388045977613764`*^9, {3.5388047690886097`*^9, 3.5388047858698597`*^9}, 
   3.5388048416823597`*^9, 3.5388049762448597`*^9, {3.538806298478445*^9, 
   3.53880632171282*^9}, 3.5388290765945177`*^9, 3.5389080881560717`*^9, {
   3.5389082052036963`*^9, 3.538908222406931*^9}, 3.5693014835156775`*^9, 
   3.569301663807844*^9, {3.635054738539609*^9, 3.635054752691609*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["DxCLalpha", "Input"],

Cell[BoxData["0"], "Output",
 CellChangeTimes->{
  3.53850429721875*^9, 3.53850527684375*^9, 3.5385053505625*^9, 
   3.538505412625*^9, 3.5388042525303926`*^9, 3.538804334841839*^9, 
   3.5388044593716373`*^9, 3.538804493215171*^9, 3.5388045555741463`*^9, 
   3.5388045977926264`*^9, {3.5388047691042347`*^9, 3.5388047859011097`*^9}, 
   3.5388048417136097`*^9, 3.5388049762761097`*^9, {3.538806298509695*^9, 
   3.53880632174407*^9}, 3.5388290766101427`*^9, 3.5389080881873226`*^9, {
   3.5389082052505713`*^9, 3.538908222438182*^9}, 3.569301483546878*^9, 
   3.5693016638328466`*^9, {3.635054738567609*^9, 3.635054752724609*^9}}]
}, Open  ]],

Cell["", "Input"],

Cell[CellGroupData[{

Cell["AR=1", "Input"],

Cell[BoxData["1"], "Output",
 CellChangeTimes->{
  3.538504297234375*^9, 3.538505276859375*^9, 3.53850535059375*^9, 
   3.53850541265625*^9, 3.5388042525616417`*^9, 3.5388043348730884`*^9, 
   3.5388044594028873`*^9, 3.5388044932464204`*^9, 3.5388045556053963`*^9, 
   3.5388045978238764`*^9, {3.5388047691511097`*^9, 3.5388047859323597`*^9}, 
   3.5388048417448597`*^9, 3.5388049763073597`*^9, {3.53880629852532*^9, 
   3.538806321759695*^9}, 3.5388290766257677`*^9, 3.538908088296698*^9, {
   3.5389082052818213`*^9, 3.538908222453807*^9}, 3.5693014835780783`*^9, 
   3.56930166386685*^9, {3.635054738605609*^9, 3.635054752764609*^9}}]
}, Open  ]],

Cell["c1=.", "Input"],

Cell[CellGroupData[{

Cell["CLalpha", "Input"],

Cell[BoxData[
 FractionBox[
  RowBox[{"10", " ", "\[Pi]"}], 
  RowBox[{"5", "+", "c1"}]]], "Output",
 CellChangeTimes->{
  3.53850429725*^9, 3.538505276875*^9, 3.538505350609375*^9, 
   3.538505412671875*^9, 3.5388042525772667`*^9, 3.538804334904338*^9, 
   3.538804459434137*^9, 3.5388044932776704`*^9, 3.5388045556366463`*^9, 
   3.538804597870751*^9, {3.5388047691823597`*^9, 3.5388047859636097`*^9}, 
   3.5388048417761097`*^9, 3.5388049763542347`*^9, {3.538806298540945*^9, 
   3.538806321790945*^9}, 3.5388290766570187`*^9, 3.538908088312323*^9, {
   3.538908205313072*^9, 3.538908222485057*^9}, 3.5693014836092787`*^9, 
   3.569301663901853*^9, {3.6350547386426086`*^9, 3.635054752804609*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["Solve[CLalpha Pi/180==.025,{c1,3}]", "Input"],

Cell[BoxData[
 RowBox[{
  StyleBox[
   RowBox[{"Solve", "::", "ivar"}], "MessageName"], 
  RowBox[{
  ":", " "}], "\<\"\[NoBreak]\\!\\(3\\)\[NoBreak] is not a valid variable. \
\\!\\(\\*ButtonBox[\\\"\[RightSkeleton]\\\", ButtonStyle->\\\"Link\\\", \
ButtonFrame->None, ButtonData:>\\\"paclet:ref/message/General/ivar\\\", \
ButtonNote -> \\\"Solve::ivar\\\"]\\)\"\>"}]], "Message", "MSG",
 CellChangeTimes->{
  3.538504297375*^9, 3.53850527690625*^9, 3.538505350625*^9, 
   3.5385054126875*^9, 3.538804252624141*^9, 3.538804334919963*^9, 
   3.538804459449762*^9, 3.538804493293295*^9, 3.5388045556678963`*^9, 
   3.538804597886376*^9, {3.5388047692136097`*^9, 3.5388047859948597`*^9}, 
   3.5388048418073597`*^9, 3.5388049763854847`*^9, {3.53880629858782*^9, 
   3.53880632180657*^9}, 3.5388290766726437`*^9, 3.538908088452949*^9, {
   3.538908205328697*^9, 3.538908222516307*^9}, 3.5693014836404786`*^9, 
   3.569301663928856*^9, {3.635054738691609*^9, 3.635054752935609*^9}}],

Cell[BoxData[
 RowBox[{"Solve", "[", 
  RowBox[{
   RowBox[{
    FractionBox[
     SuperscriptBox["\[Pi]", "2"], 
     RowBox[{"18", " ", 
      RowBox[{"(", 
       RowBox[{"5", "+", "c1"}], ")"}]}]], "\[Equal]", "0.025`"}], ",", 
   RowBox[{"{", 
    RowBox[{"c1", ",", "3"}], "}"}]}], "]"}]], "Output",
 CellChangeTimes->{
  3.538504297375*^9, 3.53850527690625*^9, 3.538505350625*^9, 
   3.5385054126875*^9, 3.538804252624141*^9, 3.538804334935588*^9, 
   3.538804459449762*^9, 3.538804493293295*^9, 3.5388045556678963`*^9, 
   3.538804597886376*^9, {3.5388047692136097`*^9, 3.5388047859948597`*^9}, 
   3.5388048418073597`*^9, 3.5388049763854847`*^9, {3.53880629858782*^9, 
   3.53880632180657*^9}, 3.5388290766726437`*^9, 3.538908088468574*^9, {
   3.538908205344322*^9, 3.538908222516307*^9}, 3.5693014836404786`*^9, 
   3.5693016639298563`*^9, {3.6350547386936088`*^9, 3.6350547529376087`*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["Solve[CLalpha Pi/180==.025,c1]", "Input"],

Cell[BoxData[
 RowBox[{"{", 
  RowBox[{"{", 
   RowBox[{"c1", "\[Rule]", "16.932454224643017`"}], "}"}], "}"}]], "Output",
 CellChangeTimes->{
  3.53850429759375*^9, 3.53850527696875*^9, 3.53850535065625*^9, 
   3.538505412703125*^9, 3.5388042526710157`*^9, 3.5388043349512124`*^9, 
   3.5388044594810114`*^9, 3.538804493324545*^9, 3.5388045557460203`*^9, 
   3.5388045979176254`*^9, {3.5388047692448597`*^9, 3.5388047860261097`*^9}, 
   3.5388048418386097`*^9, 3.5388049764323597`*^9, {3.538806298634695*^9, 
   3.538806321822195*^9}, 3.5388290767038937`*^9, 3.5389080892498293`*^9, {
   3.538908205359947*^9, 3.538908222547557*^9}, 3.5693014836716785`*^9, 
   3.569301663962859*^9, {3.635054738747609*^9, 3.6350547529966087`*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["c1 = 3.39", "Input"],

Cell[BoxData["3.39`"], "Output",
 CellChangeTimes->{
  3.538504297703125*^9, 3.53850527696875*^9, 3.538505350671875*^9, 
   3.53850541271875*^9, 3.5388042526866407`*^9, 3.538804334982462*^9, 
   3.5388044594966364`*^9, 3.53880449334017*^9, 3.5388045557616453`*^9, 
   3.5388045979332504`*^9, {3.5388047694323597`*^9, 3.5388047860573597`*^9}, 
   3.5388048420104847`*^9, 3.5388049764479847`*^9, {3.53880629865032*^9, 
   3.538806321853445*^9}, 3.5388290767195187`*^9, 3.5389080895154557`*^9, {
   3.538908205391197*^9, 3.5389082225631824`*^9}, 3.5693014836872787`*^9, 
   3.56930166406787*^9, {3.635054738775609*^9, 3.6350547531416087`*^9}}]
}, Open  ]],

Cell["AR=.", "Input"],

Cell["CLalpha:= 2 Pi AR/(c1+ AR(1+c2 Sweep))", "Input"],

Cell["c2=.", "Input"],

Cell[CellGroupData[{

Cell["AR=9", "Input"],

Cell[BoxData["9"], "Output",
 CellChangeTimes->{
  3.53850429771875*^9, 3.538505277*^9, 3.538505350703125*^9, 3.53850541275*^9,
    3.538804252936637*^9, 3.538804335013712*^9, 3.5388044595278864`*^9, 
   3.538804493387045*^9, 3.5388045558085203`*^9, 3.5388045979801254`*^9, {
   3.5388047694792347`*^9, 3.5388047861042347`*^9}, 3.5388048420573597`*^9, 
   3.5388049766979847`*^9, {3.53880629868157*^9, 3.538806321884695*^9}, 
   3.5388290767663937`*^9, 3.538908089593581*^9, {3.5389082054224477`*^9, 
   3.538908222610058*^9}, 3.5693014838276796`*^9, 3.5693016641258755`*^9, {
   3.635054738837609*^9, 3.635054753214609*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["Sweep=60 Pi/180", "Input"],

Cell[BoxData[
 FractionBox["\[Pi]", "3"]], "Output",
 CellChangeTimes->{
  3.53850429775*^9, 3.538505277015625*^9, 3.53850535071875*^9, 
   3.538505412765625*^9, 3.538804252967887*^9, 3.538804335044961*^9, 
   3.538804459559136*^9, 3.5388044934182944`*^9, 3.5388045558397703`*^9, 
   3.538804598011375*^9, {3.5388047695104847`*^9, 3.5388047861354847`*^9}, 
   3.5388048420886097`*^9, 3.5388049767292347`*^9, {3.538806298697195*^9, 
   3.53880632190032*^9}, 3.538829076782019*^9, 3.5389080896248317`*^9, {
   3.5389082054536977`*^9, 3.538908222641308*^9}, 3.56930148385888*^9, 
   3.5693016641518784`*^9, {3.635054738864609*^9, 3.6350547532506084`*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["Solve[CLalpha Pi/180==.042,{c2}]", "Input"],

Cell[BoxData[
 RowBox[{"{", 
  RowBox[{"{", 
   RowBox[{"c2", "\[Rule]", "1.1787076729099863`"}], "}"}], "}"}]], "Output",
 CellChangeTimes->{
  3.538504297765625*^9, 3.53850527703125*^9, 3.538505350734375*^9, 
   3.53850541278125*^9, 3.538804252983512*^9, 3.538804335060586*^9, 
   3.538804459590386*^9, 3.538804493433919*^9, 3.538804555855395*^9, 
   3.5388045980426245`*^9, {3.5388047695573597`*^9, 3.5388047861667347`*^9}, 
   3.5388048421198597`*^9, 3.5388049767448597`*^9, {3.53880629871282*^9, 
   3.53880632208782*^9}, 3.538829076797644*^9, 3.5389080896560817`*^9, {
   3.538908205484948*^9, 3.538908222672558*^9}, 3.5693014838744802`*^9, 
   3.569301664177881*^9, {3.6350547388926086`*^9, 3.6350547533196087`*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["c1 = 3.39", "Input"],

Cell[BoxData["3.39`"], "Output",
 CellChangeTimes->{
  3.53850429778125*^9, 3.538505277046875*^9, 3.538505350765625*^9, 
   3.538505412796875*^9, 3.5388042529991364`*^9, 3.5388043350918355`*^9, 
   3.5388044596216354`*^9, 3.538804493465169*^9, 3.5388045558866444`*^9, 
   3.5388045980738745`*^9, {3.5388047696042347`*^9, 3.5388047861823597`*^9}, 
   3.5388048421511097`*^9, 3.5388049767604847`*^9, {3.53880629874407*^9, 
   3.53880632211907*^9}, 3.538829076813269*^9, 3.538908089687332*^9, {
   3.538908205500573*^9, 3.5389082227038083`*^9}, 3.5693014839056807`*^9, 
   3.5693016642038836`*^9, {3.6350547389206085`*^9, 3.635054753369609*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["c2=1.18", "Input"],

Cell[BoxData["1.18`"], "Output",
 CellChangeTimes->{
  3.538504297796875*^9, 3.5385052770625*^9, 3.53850535078125*^9, 
   3.5385054128125*^9, 3.538804253014761*^9, 3.5388043351074605`*^9, 
   3.5388044596372604`*^9, 3.538804493480794*^9, 3.5388045559022694`*^9, 
   3.5388045981051245`*^9, {3.5388047696198597`*^9, 3.5388047862136097`*^9}, 
   3.5388048421667347`*^9, 3.5388049767917347`*^9, {3.538806298759695*^9, 
   3.53880632215032*^9}, 3.5388290768445196`*^9, 3.538908089702957*^9, {
   3.538908205531823*^9, 3.5389082227350583`*^9}, 3.5693014839212804`*^9, 
   3.5693016642308865`*^9, {3.6350547389576087`*^9, 3.6350547534186087`*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["\<\
FindRoot[
\t\tCLalpha4 Pi/180==.038,
\t\t{c2,1}]\
\>", "Input"],

Cell[BoxData[
 RowBox[{
  StyleBox[
   RowBox[{"FindRoot", "::", "nlnum"}], "MessageName"], 
  RowBox[{
  ":", " "}], "\<\"The function value \[NoBreak]\\!\\({\\(\\(-0.038`\\)\\) + \
\\(\\(0.017453292519943295`\\\\ CLalpha4\\)\\)}\\)\[NoBreak] is not a list of \
numbers with dimensions \[NoBreak]\\!\\({1}\\)\[NoBreak] at \
\[NoBreak]\\!\\({c2}\\)\[NoBreak] = \[NoBreak]\\!\\({1.`}\\)\[NoBreak]. \
\\!\\(\\*ButtonBox[\\\"\[RightSkeleton]\\\", ButtonStyle->\\\"Link\\\", \
ButtonFrame->None, ButtonData:>\\\"paclet:ref/FindRoot\\\", ButtonNote -> \
\\\"FindRoot::nlnum\\\"]\\)\"\>"}]], "Message", "MSG",
 CellChangeTimes->{
  3.5385042979375*^9, 3.538505277109375*^9, 3.538505350796875*^9, 
   3.538505412828125*^9, 3.5388042530616355`*^9, 3.53880433513871*^9, 
   3.5388044596528854`*^9, 3.538804493512044*^9, 3.5388045559491444`*^9, 
   3.5388045981207495`*^9, {3.5388047696511097`*^9, 3.5388047862448597`*^9}, 
   3.5388048421979847`*^9, 3.5388049768073597`*^9, {3.53880629880657*^9, 
   3.538806322165945*^9}, 3.5388290768601446`*^9, 3.538908090077959*^9, {
   3.5389082055630736`*^9, 3.538908222750684*^9}, 3.5693014839524803`*^9, 
   3.569301664258889*^9, {3.6350547390096087`*^9, 3.6350547534866085`*^9}}],

Cell[BoxData[
 RowBox[{"FindRoot", "[", 
  RowBox[{
   RowBox[{
    FractionBox[
     RowBox[{"CLalpha4", " ", "\[Pi]"}], "180"], "\[Equal]", "0.038`"}], ",", 
   RowBox[{"{", 
    RowBox[{"c2", ",", "1"}], "}"}]}], "]"}]], "Output",
 CellChangeTimes->{
  3.538504297984375*^9, 3.538505277109375*^9, 3.538505350796875*^9, 
   3.538505412828125*^9, 3.5388042530616355`*^9, 3.53880433513871*^9, 
   3.5388044596528854`*^9, 3.538804493512044*^9, 3.5388045559491444`*^9, 
   3.5388045981207495`*^9, {3.5388047696511097`*^9, 3.5388047862448597`*^9}, 
   3.5388048422136097`*^9, 3.5388049768229847`*^9, {3.53880629880657*^9, 
   3.53880632218157*^9}, 3.5388290768601446`*^9, 3.5389080901092095`*^9, {
   3.5389082055630736`*^9, 3.538908222750684*^9}, 3.5693014839524803`*^9, 
   3.569301664259889*^9, {3.635054739011609*^9, 3.635054753488609*^9}}]
}, Open  ]],

Cell["AR=.", "Input"],

Cell["Sweep=.", "Input"],

Cell[CellGroupData[{

Cell["\<\
Plot3D[CLalpha 2 Pi/360.,{AR,0,10},{Sweep,0,Pi/3},
PlotRange -> {0, .11},ViewPoint->{0.000, -900.000, 0.000}]\
\>", "Input"],

Cell[BoxData[
 Graphics3DBox[GraphicsComplex3DBox[CompressedData["
1:eJyFnXlUje33/5sHRNIolTRSKlMUugwlGZtUEjJEIWNCkkjRZChDmqdz6jRP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   "], {{
     {EdgeForm[None], GraphicsGroup3DBox[{Polygon3DBox[CompressedData["
1:eJwtmXnATtUWxs8++yhTSEmDyFyElJAxEpImzSpNSNdYiBRNUkglUhGRMVFJ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         "]], Polygon3DBox[CompressedData["
1:eJwtmnXAVEUXh3dm9kVFRcACESkJAxG7xfgUW7HFArEwELsL7BZUVAxsbBQ7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         "]], Polygon3DBox[CompressedData["
1:eJwt13fcVnMbAPDnue+7FIUUkUIaGkLam7ZUtNPWRHsXLSoVhYxKJaNJhVfK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         "]]}]}, {}, {}, {}, {}}, {
     {GrayLevel[0], Line3DBox[CompressedData["
1:eJwt0jkvBVEYgOGxr9cS0RINUVCKglIUVCIKOqKgIBEFpULodPwCWiL0Ejr7
vm8REVth38NzEsU7z8nck5nv3HuLWrsbuuKiKBrUq8L6UReajo+iHM6xkKss
5wmrec96frOFmQlRFFOndSn7Wclh1nKMTZxgO2fZywU+8Yrv2tSz7rRooC0u
cZvL3OEKd8NM3OMa97nODR2E5/CQWzziNo+5wxPu8pR7POOkc1zzQ+d6CWfU
iNk2OMB59nCGbRxnI0dZwyFWsI8lLFaHdRqb+ekddbxlFY9YFs7FAj7Yd8k3
ZYfvJexVvhmzmMcYc5kZ9jCDMaYzg2nhfUxlMpOUYp3A5PAbh3v8VaJ+wmf6
kjGiKZeb///DH9M3Sv0=
       "]]}, {
      Line3DBox[{690, 1007, 473, 689, 1122, 912, 691, 1123, 913, 692, 1124, 
       914, 693, 1125, 915, 694, 1126, 916, 695, 1127, 1014, 1229, 696, 1128, 
       917, 697, 1129, 918, 698, 1130, 919, 699, 1131, 920, 700, 1132, 921, 
       701, 1133, 922, 702, 1339, 1008, 923, 1009}], 
      Line3DBox[{704, 1015, 1230, 703, 488, 705, 1134, 924, 706, 1135, 925, 
       707, 1136, 926, 708, 1137, 927, 709, 1138, 1016, 1231, 710, 1017, 1232,
        711, 1139, 928, 712, 1140, 929, 713, 1141, 930, 714, 1142, 931, 715, 
       1143, 932, 716, 1144, 933, 717}], 
      Line3DBox[{719, 1018, 1233, 718, 1019, 1234, 720, 504, 721, 1145, 934, 
       722, 1146, 935, 723, 1147, 936, 724, 1148, 1020, 1235, 725, 1021, 1236,
        726, 1022, 1237, 727, 1149, 937, 728, 1150, 938, 729, 1151, 939, 730, 
       1152, 940, 731, 1153, 941, 732}], 
      Line3DBox[{734, 1023, 1238, 733, 1024, 1239, 735, 1025, 1240, 736, 1026,
        1241, 737, 1154, 942, 738, 1155, 943, 739, 1156, 1027, 1242, 740, 
       1028, 1243, 741, 1029, 1244, 742, 1030, 1245, 743, 1157, 944, 744, 
       1158, 945, 745, 1159, 946, 746, 1160, 947, 747}], 
      Line3DBox[{749, 1031, 1246, 748, 1032, 1247, 750, 1033, 1248, 751, 1034,
        1249, 752, 1035, 1250, 753, 1161, 948, 754, 1162, 1036, 1251, 755, 
       1037, 1252, 756, 1038, 1253, 757, 1039, 1254, 758, 1040, 1255, 759, 
       1163, 949, 760, 1164, 950, 761, 1165, 951, 762}], 
      Line3DBox[{764, 1041, 1256, 763, 1042, 1257, 765, 1043, 1258, 766, 1044,
        1259, 767, 1045, 1260, 768, 1046, 1261, 769, 1166, 1047, 1262, 770, 
       1048, 1263, 771, 1049, 1264, 772, 1050, 1265, 773, 1051, 1266, 774, 
       1052, 1267, 775, 1167, 952, 776, 1168, 953, 777}], 
      Line3DBox[{781, 1169, 954, 779, 1170, 955, 783, 1171, 956, 785, 1172, 
       957, 787, 1173, 958, 789, 1174, 959, 791, 1175, 1060, 1276, 793, 1176, 
       960, 795, 1177, 961, 797, 1178, 962, 799, 1179, 963, 801, 1180, 964, 
       803, 1181, 965, 805, 1183, 967, 807}], 
      Line3DBox[{806, 966, 1182, 804, 1282, 1066, 802, 1281, 1065, 800, 1280, 
       1064, 798, 1279, 1063, 796, 1278, 1062, 794, 1277, 1061, 792, 1275, 
       1274, 1059, 790, 1273, 1058, 788, 1272, 1057, 786, 1271, 1056, 784, 
       1270, 1055, 782, 1269, 1054, 778, 1268, 1053, 780}], 
      Line3DBox[{809, 1067, 1283, 808, 1184, 968, 810, 1185, 969, 811, 1186, 
       970, 812, 1187, 971, 813, 1188, 972, 814, 1189, 1068, 1284, 815, 1069, 
       1285, 816, 1190, 973, 817, 1191, 974, 818, 1192, 975, 819, 1193, 976, 
       820, 1194, 977, 821, 1195, 978, 822}], 
      Line3DBox[{824, 1070, 1286, 823, 1071, 1287, 825, 1196, 979, 826, 1197, 
       980, 827, 1198, 981, 828, 1199, 982, 829, 1200, 1072, 1288, 830, 1073, 
       1289, 831, 601, 832, 1201, 983, 833, 1202, 984, 834, 1203, 985, 835, 
       1204, 986, 836, 1205, 987, 837}], 
      Line3DBox[{839, 1074, 1290, 838, 1075, 1291, 840, 1076, 1292, 841, 1206,
        988, 842, 1207, 989, 843, 1208, 990, 844, 1209, 1077, 1293, 845, 1078,
        1294, 846, 1079, 1295, 847, 617, 848, 1210, 991, 849, 1211, 992, 850, 
       1212, 993, 851, 1213, 994, 852}], 
      Line3DBox[{854, 1080, 1296, 853, 1081, 1297, 855, 1082, 1298, 856, 1083,
        1299, 857, 1214, 995, 858, 1215, 996, 859, 1216, 1084, 1300, 860, 
       1085, 1301, 861, 1086, 1302, 862, 1087, 1303, 863, 1217, 997, 864, 
       1218, 998, 865, 1219, 999, 866, 1220, 1000, 867}], 
      Line3DBox[{869, 1088, 1304, 868, 1089, 1305, 870, 1090, 1306, 871, 1091,
        1307, 872, 1092, 1308, 873, 1221, 1001, 874, 1222, 1093, 1309, 875, 
       1094, 1310, 876, 1095, 1311, 877, 1096, 1312, 878, 1097, 1313, 879, 
       1223, 1002, 880, 1224, 1003, 881, 1225, 1004, 882}], 
      Line3DBox[{884, 1098, 1314, 883, 1099, 1315, 885, 1100, 1316, 886, 1101,
        1317, 887, 1102, 1318, 888, 1103, 1319, 889, 1226, 1104, 1320, 890, 
       1105, 1321, 891, 1106, 1322, 892, 1107, 1323, 893, 1108, 1324, 894, 
       1109, 1325, 895, 1227, 1005, 896, 1228, 1006, 897}], 
      Line3DBox[{911, 1013, 1012, 1340, 910, 1338, 1120, 909, 1337, 1119, 908,
        1336, 1118, 907, 1335, 1117, 906, 1334, 1116, 905, 1333, 1115, 904, 
       1332, 673, 903, 1331, 1114, 902, 1330, 1113, 901, 1329, 1112, 900, 
       1328, 1111, 899, 1327, 1110, 898, 1121, 1326, 1010, 1011}]}, {
      Line3DBox[{251, 474, 1122, 252, 488, 280, 1234, 503, 295, 1239, 518, 
       310, 1247, 533, 325, 1257, 548, 340, 1269, 563, 1170, 355, 578, 1184, 
       370, 1287, 593, 385, 1291, 608, 400, 1297, 623, 415, 1305, 638, 430, 
       1315, 653, 445, 1327, 668, 460}], 
      Line3DBox[{253, 475, 1123, 254, 489, 1134, 281, 504, 296, 1240, 519, 
       311, 1248, 534, 326, 1258, 549, 341, 1270, 564, 1171, 356, 579, 1185, 
       371, 594, 1196, 386, 1292, 609, 401, 1298, 624, 416, 1306, 639, 431, 
       1316, 654, 446, 1328, 669, 461}], 
      Line3DBox[{255, 476, 1124, 256, 490, 1135, 282, 505, 1145, 297, 1241, 
       520, 312, 1249, 535, 327, 1259, 550, 342, 1271, 565, 1172, 357, 580, 
       1186, 372, 595, 1197, 387, 610, 1206, 402, 1299, 625, 417, 1307, 640, 
       432, 1317, 655, 447, 1329, 670, 462}], 
      Line3DBox[{257, 477, 1125, 258, 491, 1136, 283, 506, 1146, 298, 521, 
       1154, 313, 1250, 536, 328, 1260, 551, 343, 1272, 566, 1173, 358, 581, 
       1187, 373, 596, 1198, 388, 611, 1207, 403, 626, 1214, 418, 1308, 641, 
       433, 1318, 656, 448, 1330, 671, 463}], 
      Line3DBox[{259, 478, 1126, 260, 492, 1137, 284, 507, 1147, 299, 522, 
       1155, 314, 537, 1161, 329, 1261, 552, 344, 1273, 567, 1174, 359, 582, 
       1188, 374, 597, 1199, 389, 612, 1208, 404, 627, 1215, 419, 642, 1221, 
       434, 1319, 657, 449, 1331, 672, 464}], 
      Line3DBox[{261, 479, 1127, 263, 493, 1138, 285, 508, 1148, 300, 523, 
       1156, 315, 538, 1162, 330, 553, 1166, 345, 1274, 568, 1175, 360, 583, 
       1189, 375, 598, 1200, 390, 613, 1209, 405, 628, 1216, 420, 643, 1222, 
       435, 658, 1226, 450, 673, 465}], 
      Line3DBox[{265, 481, 1128, 266, 1232, 495, 287, 1236, 510, 302, 1243, 
       525, 317, 1252, 540, 332, 1263, 555, 347, 1277, 570, 1176, 362, 1285, 
       585, 377, 1289, 600, 392, 1294, 615, 407, 1301, 630, 422, 1310, 645, 
       437, 1321, 660, 452, 1333, 675, 467}], 
      Line3DBox[{267, 482, 1129, 268, 496, 1139, 288, 1237, 511, 303, 1244, 
       526, 318, 1253, 541, 333, 1264, 556, 348, 1278, 571, 1177, 363, 586, 
       1190, 378, 601, 393, 1295, 616, 408, 1302, 631, 423, 1311, 646, 438, 
       1322, 661, 453, 1334, 676, 468}], 
      Line3DBox[{269, 483, 1130, 270, 497, 1140, 289, 512, 1149, 304, 1245, 
       527, 319, 1254, 542, 334, 1265, 557, 349, 1279, 572, 1178, 364, 587, 
       1191, 379, 602, 1201, 394, 617, 409, 1303, 632, 424, 1312, 647, 439, 
       1323, 662, 454, 1335, 677, 469}], 
      Line3DBox[{271, 484, 1131, 272, 498, 1141, 290, 513, 1150, 305, 528, 
       1157, 320, 1255, 543, 335, 1266, 558, 350, 1280, 573, 1179, 365, 588, 
       1192, 380, 603, 1202, 395, 618, 1210, 410, 633, 1217, 425, 1313, 648, 
       440, 1324, 663, 455, 1336, 678, 470}], 
      Line3DBox[{273, 485, 1132, 274, 499, 1142, 291, 514, 1151, 306, 529, 
       1158, 321, 544, 1163, 336, 1267, 559, 351, 1281, 574, 1180, 366, 589, 
       1193, 381, 604, 1203, 396, 619, 1211, 411, 634, 1218, 426, 649, 1223, 
       441, 1325, 664, 456, 1337, 679, 471}], 
      Line3DBox[{275, 486, 1133, 276, 500, 1143, 292, 515, 1152, 307, 530, 
       1159, 322, 545, 1164, 337, 560, 1167, 352, 1282, 575, 1181, 367, 590, 
       1194, 382, 605, 1204, 397, 620, 1212, 412, 635, 1219, 427, 650, 1224, 
       442, 665, 1227, 457, 1338, 680, 472}], 
      Line3DBox[{277, 682, 1339, 683, 278, 501, 1144, 293, 516, 1153, 308, 
       531, 1160, 323, 546, 1165, 338, 561, 1168, 353, 576, 1182, 1183, 368, 
       591, 1195, 383, 606, 1205, 398, 621, 1213, 413, 636, 1220, 428, 651, 
       1225, 443, 666, 1228, 458, 685, 1340, 686, 687}], 
      Line3DBox[{459, 667, 684, 1326, 444, 652, 1314, 429, 637, 1304, 414, 
       622, 1296, 399, 607, 1290, 384, 592, 1286, 369, 577, 1283, 354, 1169, 
       562, 1268, 339, 547, 1256, 324, 532, 1246, 309, 517, 1238, 294, 502, 
       1233, 279, 487, 1230, 250, 473, 681, 688}], 
      Line3DBox[{466, 674, 1332, 451, 659, 1320, 436, 644, 1309, 421, 629, 
       1300, 406, 614, 1293, 391, 599, 1288, 376, 584, 1284, 361, 569, 1276, 
       1275, 346, 554, 1262, 331, 539, 1251, 316, 524, 1242, 301, 509, 1235, 
       286, 494, 1231, 264, 480, 1229, 262}]}, {}, {}}},
   VertexNormals->CompressedData["
1:eJx0nGVUVc3bh0FAEUxQUkFCxCBUQqlbQkFKOkQ6BQkp6e6GQ3c3AipIKCOC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    "]],
  Axes->True,
  BoxRatios->{1, 1, 0.4},
  Method->{"RotationControl" -> "Globe"},
  PlotRange->
   NCache[{{0, 10}, {0, Rational[1, 3] Pi}, {0, 0.11}}, {{0, 10}, {
     0, 1.0471975511965976`}, {0, 0.11}}],
  PlotRangePadding->{
    Scaled[0.02], 
    Scaled[0.02], Automatic},
  ViewPoint->{0., -900., 0.}]], "Output",
 CellChangeTimes->{
  3.53850429915625*^9, 3.53850527725*^9, 3.538505350875*^9, 
   3.53850541296875*^9, 3.538804253186634*^9, 3.538804335216834*^9, 
   3.53880445973101*^9, 3.538804493605793*^9, 3.5388045560428934`*^9, 
   3.5388045981988735`*^9, {3.5388047697292347`*^9, 3.5388047863229847`*^9}, 
   3.5388048422917347`*^9, 3.5388049768854847`*^9, {3.53880629886907*^9, 
   3.538806322259695*^9}, 3.538829076922645*^9, 3.5389080905467124`*^9, {
   3.538908205656824*^9, 3.5389082228600593`*^9}, 3.569301484014881*^9, 
   3.5693016643138943`*^9, {3.6350547395056086`*^9, 3.6350547535576086`*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["ViewPoint->{0.000, 0.000, 9.000}", "Input"],

Cell[BoxData[
 RowBox[{"ViewPoint", "\[Rule]", 
  RowBox[{"{", 
   RowBox[{"0.`", ",", "0.`", ",", "9.`"}], "}"}]}]], "Output",
 CellChangeTimes->{
  3.5385042993125*^9, 3.53850527734375*^9, 3.538505350890625*^9, 
   3.5385054130625*^9, 3.538804253202259*^9, 3.5388043352480836`*^9, 
   3.5388044597622595`*^9, 3.538804493637043*^9, 3.5388045560741434`*^9, 
   3.5388045982301235`*^9, {3.5388047697761097`*^9, 3.5388047863542347`*^9}, 
   3.5388048423229847`*^9, 3.5388049769167347`*^9, {3.53880629890032*^9, 
   3.538806322290945*^9}, 3.5388290769851456`*^9, 3.5389080908435893`*^9, {
   3.538908205703699*^9, 3.5389082228913097`*^9}, 3.5693014840460815`*^9, 
   3.569301664332896*^9, {3.6350547396546087`*^9, 3.635054753580609*^9}}]
}, Open  ]],

Cell[CellGroupData[{

Cell["CLalpha", "Input"],

Cell[BoxData[
 FractionBox[
  RowBox[{"2", " ", "AR", " ", "\[Pi]"}], 
  RowBox[{"3.39`", "\[VeryThinSpace]", "+", 
   RowBox[{"AR", " ", 
    RowBox[{"(", 
     RowBox[{"1", "+", 
      RowBox[{"1.18`", " ", "Sweep"}]}], ")"}]}]}]]], "Output",
 CellChangeTimes->{
  3.53850429934375*^9, 3.538505277359375*^9, 3.53850535090625*^9, 
   3.538505413078125*^9, 3.538804253233508*^9, 3.538804335279333*^9, 
   3.5388044597778845`*^9, 3.538804493652668*^9, 3.538804556121018*^9, 
   3.5388045982613735`*^9, {3.5388047698073597`*^9, 3.5388047863854847`*^9}, 
   3.5388048423386097`*^9, 3.5388049769323597`*^9, {3.538806298915945*^9, 
   3.53880632230657*^9}, 3.5388290770163956`*^9, 3.53890809087484*^9, {
   3.538908205750575*^9, 3.5389082229225597`*^9}, 3.5693014840616813`*^9, 
   3.5693016643598995`*^9}]
}, Open  ]]
}, Open  ]]
},
WindowSize->{707, 817},
WindowMargins->{{Automatic, 54}, {-99, Automatic}},
Magnification->0.7999999523162842,
FrontEndVersion->"8.0 for Microsoft Windows (64-bit) (October 6, 2011)",
StyleDefinitions->"Default.nb"
]
(* End of Notebook Content *)

(* Internal cache information *)
(*CellTagsOutline
CellTagsIndex->{}
*)
(*CellTagsIndex
CellTagsIndex->{}
*)
(*NotebookFileOutline
Notebook[{
Cell[CellGroupData[{
Cell[579, 22, 155, 2, 65, "Title"],
Cell[CellGroupData[{
Cell[759, 28, 43, 0, 24, "Input"],
Cell[805, 30, 704, 12, 38, "Output"]
}, Open  ]],
Cell[1524, 45, 21, 0, 24, "Input"],
Cell[1548, 47, 21, 0, 24, "Input"],
Cell[CellGroupData[{
Cell[1594, 51, 40, 0, 24, "Input"],
Cell[1637, 53, 634, 9, 23, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[2308, 67, 21, 0, 24, "Input"],
Cell[2332, 69, 638, 9, 23, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[3007, 83, 26, 0, 24, "Input"],
Cell[3036, 85, 631, 9, 23, "Output"]
}, Open  ]],
Cell[3682, 97, 17, 0, 24, "Input"],
Cell[CellGroupData[{
Cell[3724, 101, 21, 0, 24, "Input"],
Cell[3748, 103, 637, 9, 23, "Output"]
}, Open  ]],
Cell[4400, 115, 21, 0, 24, "Input"],
Cell[CellGroupData[{
Cell[4446, 119, 24, 0, 24, "Input"],
Cell[4473, 121, 700, 12, 38, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[5210, 138, 51, 0, 24, "Input"],
Cell[5264, 140, 979, 17, 18, "Message"],
Cell[6246, 159, 901, 19, 41, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[7184, 183, 47, 0, 24, "Input"],
Cell[7234, 185, 732, 12, 23, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[8003, 202, 26, 0, 24, "Input"],
Cell[8032, 204, 640, 9, 23, "Output"]
}, Open  ]],
Cell[8687, 216, 21, 0, 24, "Input"],
Cell[8711, 218, 55, 0, 24, "Input"],
Cell[8769, 220, 21, 0, 24, "Input"],
Cell[CellGroupData[{
Cell[8815, 224, 21, 0, 24, "Input"],
Cell[8839, 226, 625, 9, 23, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[9501, 240, 32, 0, 24, "Input"],
Cell[9536, 242, 652, 10, 36, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[10225, 257, 49, 0, 24, "Input"],
Cell[10277, 259, 723, 12, 23, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[11037, 276, 26, 0, 24, "Input"],
Cell[11066, 278, 642, 9, 23, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[11745, 292, 24, 0, 24, "Input"],
Cell[11772, 294, 641, 9, 23, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[12450, 308, 73, 4, 52, "Input"],
Cell[12526, 314, 1212, 20, 18, "Message"],
Cell[13741, 336, 841, 16, 37, "Output"]
}, Open  ]],
Cell[14597, 355, 21, 0, 24, "Input"],
Cell[14621, 357, 24, 0, 24, "Input"],
Cell[CellGroupData[{
Cell[14670, 361, 134, 3, 38, "Input"],
Cell[14807, 366, 83276, 1357, 131, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[98120, 1728, 49, 0, 24, "Input"],
Cell[98172, 1730, 734, 12, 23, "Output"]
}, Open  ]],
Cell[CellGroupData[{
Cell[98943, 1747, 24, 0, 24, "Input"],
Cell[98970, 1749, 801, 16, 39, "Output"]
}, Open  ]]
}, Open  ]]
}
]
*)

(* End of internal cache information *)
